Single-Cell and Transcriptomic Analyses Reveal the Influence of Diabetes on Ovarian Cancer

Author:

Zhao Zhihao1,Wang Qilin1,Zhao Fang2,Ma Junnan1,Sui Xue1,Choe Hyok Chol1,Chen Peng1,Li Siqi1,Zhang Lin1

Affiliation:

1. Dalian Medical University

2. Hunan University of Chinese Medicine

Abstract

Abstract Background:There has been a significant surge in the global prevalence of diabetes mellitus (DM), which increases the susceptibility of individuals to ovarian cancer (OC). However, the relationship between DM and OC remains largely unexplored. The objective of this study is to provide preliminary insights into the shared molecular regulatory mechanisms and potential biomarkers between DM and OC. Methods:Multiple datasets from the GEO database were utilized for bioinformatics analysis. Single cell datasets GSE184880 and GSE165816 from the GEO database were analysed. Subsequently, immune cell infiltration analysis was performed on mRNA expression data from GSE40595 and GSE29142. The intersection of these datasets yielded a set of common genes associated with both OC and DM. Using these overlapping genes and Cytoscape, a protein‒protein interaction (PPI) network was constructed, and 10 core targets were selected. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes (KEGG) enrichment analyses were then conducted on these core targets. Additionally, advanced bioinformatics analyses, including transcription factor (TF)–genes interaction network analysis and microRNA (miRNA)–genes coregulation network analysis, were performed based on the core targets. Results:Immune cell infiltration analysis of mRNA expression data revealed significant differences in mononuclear cell levels. By intersecting the single-cell datasets, a total of 119 targets related to mononuclear cells in both OC and DM were identified. PPI network analysis further identified 10 hub genesincludingHSP90AA1, HSPA8, SNRPD2, UBA52, SOD1, RPL13A, RPSA, ITGAM, PPP1CC, and PSMA5, as potential targets of OC and DM. Enrichment analysis indicated that these genes are primarily associated with neutrophil degranulation, GDP-dissociation inhibitor activity, and the IL-17 signaling pathway, suggesting their involvement in the regulation of the tumor microenvironment. Furthermore, the TF-gene and miRNA-gene regulatory networks were validated using NetworkAnalyst. The identified TFs included SREBF2, GATA2, and SRF, while the miRNAs included miR-320a, miR-378a-3p, and miR-26a-5p. Conclusion: This study revealed the shared gene interaction network between OC and DM and predicted the TFs and miRNAs associated with core genes in monocytes. Our research findings contribute to identifying potential biological mechanisms underlying the relationship between OC and DM.

Publisher

Research Square Platform LLC

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